Published May 2009 | Version Published
Book Section - Chapter Open

Multiple hypothesis tracking using clustered measurements

  • 1. ROR icon Jet Propulsion Lab
  • 2. ROR icon California Institute of Technology

Abstract

This paper introduces an algorithm for tracking targets whose locations are inferred from clusters of observations. This method, which we call MHTC, expands the traditional multiple hypothesis tracking (MHT) hypothesis tree to include model hypotheses - possible ways the data can be clustered in each time step - as well as ways the measurements can be associated with existing targets across time steps. We present this new hypothesis framework and its probability expressions and demonstrate MHTC's operation in a robotic solution to tracking neural signal sources.

Additional Information

© 2009 IEEE. This work was completed at the California Institute of Technology with support from the National Institutes of Health and the Rose Hills Foundation.

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Identifiers

Eprint ID
96470
Resolver ID
CaltechAUTHORS:20190617-110445594

Funding

NIH
Rose Hills Foundation

Dates

Created
2019-06-17
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Updated
2021-11-16
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